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Approximate Joint Diagonalization and Geometric Mean of Symmetric Positive Definite Matrices

机译:对称正定矩阵的近似联合对角化和几何均值

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摘要

We explore the connection between two problems that have arisen independently in the signal processing and related fields: the estimation of the geometric mean of a set of symmetric positive definite (SPD) matrices and their approximate joint diagonalization (AJD). Today there is a considerable interest in estimating the geometric mean of a SPD matrix set in the manifold of SPD matrices endowed with the Fisher information metric. The resulting mean has several important invariance properties and has proven very useful in diverse engineering applications such as biomedical and image data processing. While for two SPD matrices the mean has an algebraic closed form solution, for a set of more than two SPD matrices it can only be estimated by iterative algorithms. However, none of the existing iterative algorithms feature at the same time fast convergence, low computational complexity per iteration and guarantee of convergence. For this reason, recently other definitions of geometric mean based on symmetric divergence measures, such as the Bhattacharyya divergence, have been considered. The resulting means, although possibly useful in practice, do not satisfy all desirable invariance properties. In this paper we consider geometric means of covariance matrices estimated on high-dimensional time-series, assuming that the data is generated according to an instantaneous mixing model, which is very common in signal processing. We show that in these circumstances we can approximate the Fisher information geometric mean by employing an efficient AJD algorithm. Our approximation is in general much closer to the Fisher information geometric mean as compared to its competitors and verifies many invariance properties. Furthermore, convergence is guaranteed, the computational complexity is low and the convergence rate is quadratic. The accuracy of this new geometric mean approximation is demonstrated by means of simulations.
机译:我们探讨了在信号处理和相关领域中独立出现的两个问题之间的联系:一组对称正定(SPD)矩阵的几何平均值的估计及其近似联合对角化(AJD)。如今,人们对估计具有Fisher信息量度的SPD矩阵的流形中设置的SPD矩阵的几何平均值有相当大的兴趣。所得平均值具有几个重要的不变性,并且已证明在多种工程应用(例如生物医学和图像数据处理)中非常有用。虽然对于两个SPD矩阵,均值具有代数闭合形式解,但对于一组超过两个SPD矩阵,则只能通过迭代算法进行估计。但是,现有的迭代算法都没有同时具有快速收敛,每次迭代的计算复杂度低和保证收敛的特点。因此,最近考虑了基于对称散度测度的其他几何均值定义,例如Bhattacharyya散度。所得的手段尽管在实践中可能有用,但不能满足所有期望的不变性。在本文中,我们考虑在高维时间序列上估计的协方差矩阵的几何均值,假设数据是根据瞬时混合模型生成的,这在信号处理中非常常见。我们表明,在这种情况下,我们可以通过采用有效的AJD算法来近似Fisher信息的几何平均值。与竞争对手相比,我们的近似值通常更接近Fisher信息几何平均值,并验证了许多不变性。此外,保证了收敛,计算复杂度低并且收敛速度是二次的。通过仿真证明了这种新的几何平均近似的准确性。

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